Cohomological Obstructions to Global Counterfactuals: A Sheaf-Theoretic Foundation for Generative Causal Models
arXiv cs.LG / 3/19/2026
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Key Points
- It formalizes structural causal models as cellular sheaves over Wasserstein spaces and identifies cohomological obstructions to globally consistent counterfactuals when the causal graph has non-trivial homology.
- It introduces entropic regularization to avoid deterministic singularities (manifold tearing) and derives the Entropic Wasserstein Causal Sheaf Laplacian, a system of coupled non-linear Fokker-Planck equations.
- It proves an entropic pullback lemma for the first variation of pushforward measures and links this to automatic differentiation via the implicit function theorem on Sinkhorn optimality, enabling O(1)-memory reverse-mode gradients.
- Empirically, the framework demonstrates entropic tunneling to navigate topological barriers in high-dimensional scRNA-seq counterfactuals and introduces the Topological Causal Score as a topology-aware causal discovery detector.
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